Xiao Lei, Heide Felix, Heidrich Wolfgang, Scholkopf Bernhard, Hirsch Michael
IEEE Trans Image Process. 2018 Apr 30. doi: 10.1109/TIP.2018.2831925.
Recently, several discriminative learning approaches have been proposed for effective image restoration, achieving convincing trade-off between image quality and computational efficiency. However, these methods require separate training for each restoration task (e.g., denoising, deblurring, demosaicing) and problem condition (e.g., noise level of input images). This makes it time-consuming and difficult to encompass all tasks and conditions during training. In this paper, we propose a discriminative transfer learning method that incorporates formal proximal optimization and discriminative learning for general image restoration. The method requires a single-pass discriminative training and allows for reuse across various problems and conditions while achieving an efficiency comparable to previous discriminative approaches. Furthermore, after being trained, our model can be easily transferred to new likelihood terms to solve untrained tasks, or be combined with existing priors to further improve image restoration quality.
最近,为实现有效的图像恢复,人们提出了几种判别式学习方法,在图像质量和计算效率之间取得了令人信服的平衡。然而,这些方法需要针对每个恢复任务(例如去噪、去模糊、去马赛克)和问题条件(例如输入图像的噪声水平)进行单独训练。这使得在训练期间涵盖所有任务和条件既耗时又困难。在本文中,我们提出了一种判别式迁移学习方法,该方法将形式近端优化和判别式学习相结合,用于一般图像恢复。该方法需要单次判别式训练,并允许在各种问题和条件下重用,同时实现与先前判别式方法相当的效率。此外,在经过训练后,我们的模型可以轻松地转移到新的似然项以解决未训练的任务,或者与现有先验相结合以进一步提高图像恢复质量。